An Optimal Time Constraint Algorithm for Energy Consumption in Hetrogeneous Mobile Networks

Authors

  • Kavin Francis Xavier M/S Muscat Engineering Consultancy Pvt. Ltd, Trichy-620001, Tamil Nadu, India
  • Geetha Vadnala Department of CSE, Madanapalle Institute of Technology & Science, Andhra Pradesh, India
  • Gaganpreet Kaur Chitkara University Institute of Engineering and Technology, Chitkara University Punjab, India
  • Meena Malik University Centre for Research & Development,Chandigarh University, Punjab, India.
  • Shashikant Patil Department of CSE, Atlas SkillTech University, Mumbai, India
  • Ram Kishun Lodhi Department of Applied Science, Symbiosis Institute of Technology [SIT], Symbiosis International (Deemed University) [SIU], Lavale, Pune-412115, Maharashtra, India

Keywords:

Heterogeneous Mobile Network, Optimization, Power consumption, Phtotovoltic energy, Spatial cellular traffic

Abstract

Ever-increasing information had led to a huge increase in mobile network energy consumption. Recent advancements in heterogeneous mobile networks and ground stations powered by renewable energy are present in the mobile communications sector. In this study, we explore the reasons, problems, and options for addressing the issue of lower electricity costs for these heterogeneous grids. With the variety of issues on traffic and energy consumption, low-cost electricity requires both spatially and temporally the allocation of resource optimization. Then it shows how to merge the improved green power time allocation and the dispersal of space cell traffic into a new approach. A proposed methodology is developed in four phases such as energy forecasting, customer association, green energy reallocation, and optimization. The whole optimization problem is broken down into four sub-problems. The results of the simulation show that the approach we propose may significantly reduce electricity prices.

Downloads

Download data is not yet available.

References

Borah, J., & Bora, J. (2020). Dynamic and location‐based power allocation mechanism for inter‐cell interference mitigation in 5G heterogeneous cellular network. International Journal of Communication Systems, 33(15), e4548.

Arif, M., Wyne, S., Navaie, K., Nawaz, S. J., & Alvi, S. H. (2020). Decoupled downlink and uplink access for aerial terrestrial heterogeneous cellular networks. IEEE Access, 8, 111172-111185.

Rushdi, A. M. A., Hassan, A. K., & Moinuddin, M. (2020). System reliability analysis of small-cell deployment in heterogeneous cellular networks. Telecommunication Systems, 73, 371-381.

Buvana, M., Loheswaran, K., Madhavi, K., Ponnusamy, S., Behura, A., & Jayavadivel, R. (2021). Improved Resource management and utilization based on a fog-cloud computing system with IoT incorporated with Classifier systems. Microprocessors and Microsystems, 103815.

Rani, S., Ahmed, S. H., & Rastogi, R. (2020). Dynamic clustering approach based on wireless sensor networks genetic algorithm for IoT applications. Wireless Networks, 26, 2307-2316.

Abdel-Basset, M., Mohamed, R., Mirjalili, S., Chakrabortty, R. K., & Ryan, M. J. (2020). Solar photovoltaic parameter estimation using an improved equilibrium optimizer. Solar Energy, 209, 694-708.

Kaur, G., Bharathiraja, N., Murugesan, S., Pradeepa, K., & Sudhakar, G. (2023, February). A Security model with efficient AES and Security Performance Trade-off Analysis of Cryptography Systems with Cloud Computing. In 2023 Fifth International Conference on Electrical, Computer and Communication Technologies (ICECCT) (pp. 01-08). IEEE.

M. Malik and M. Sharma, “Implementation of Energy Constraints of S-MAC Protocol,” in Proceedings of the 2018 7th International Conference on Reliability, Infocom Technologies and Optimization (Trends and Future Directions) (ICRITO), pp. 1–7, Noida, India, August 2018.

Kalpana, V., Mishra, D. K., Chanthirasekaran, K., Haldorai, A., Nath, S. S., & Saraswat, B. K. (2022). On reducing energy cost consumption in heterogeneous cellular networks using optimal time constraint algorithm. Optik, 270, 170008.

Vasconcelos Sampaio, P. G., Aguirre Gonzalez, M. O., Monteiro de Vasconcelos, R., Santos, M. A. T. D., Jacome Vidal, P. D. C., Pereira, J. P. P., & Santi, E. (2020). Prospecting technologies for photovoltaic solar energy: Overview of its technical‐commercial viability. International Journal of Energy Research, 44(2), 651-668.

Wang, B., Yang, Q., Yang, L. T., & Zhu, C. (2017). On minimizing energy consumption cost in green heterogeneous wireless networks. Computer Networks, 129, 522-535.

Savitch, S. L., Bauer, T. M., Alvarez, N. H., Johnson, A. P., Yeo, T. P., Lavu, H., ... & Cowan, S. W. (2020). The pathway to low outlier status in venous thromboembolism events: an analysis of pancreatic surgery in the National Surgical Quality Improvement Program. Journal of Pancreatic Cancer, 6(1), 55-63.

Shankar, G., Kaur, G., & Gill, S. K. (2023). Security and Privacy Challenges in IoT System Resolving Using Blockchain Technology. In Convergence of IoT, Blockchain, and Computational Intelligence in Smart Cities (pp. 136-161). CRC Press.

Veltmann, C., Winter, S., Duncker, D., Jungbauer, C. G., Wäßnig, N. K., Geller, J. C., ... & Klein, H. U. (2021). Protected risk stratification with the wearable cardioverter-defibrillator: results from the WEARIT-II-EUROPE registry. Clinical Research in Cardiology, 110, 102-113.

Erath, K., Ingram, J., Moschkovich, J., & Prediger, S. (2021). Designing and enacting instruction that enhances language for mathematics learning: A review of the state of development and research. ZDM–Mathematics Education, 53, 245-262.

Kumar, A., Sharma, S., Goyal, N., Singh, A., Cheng, X., & Singh, P. (2021). Secure and energy-efficient smart building architecture with emerging technology IoT. Computer Communications, 176, 207-217.

Khawam, K., Lahoud, S., El Helou, M., Martin, S., & Gang, F. (2020). Coordinated framework for spectrum allocation and user association in 5G HetNets with mmWave. IEEE Transactions on Mobile Computing, 21(4), 1226-1243.

Nagu, B., Arjunan, T., Bangare, M. L., Karuppaiah, P., Kaur, G., & Bhatt, M. W. (2023). Ultra-low latency communication technology for Augmented Reality application in mobile periphery computing. Paladyn, Journal of Behavioral Robotics, 14(1), 20220112.

Anand, M., Antonidoss, A., Balamanigandan, R., Rahmath Nisha, S., Gurunathan, K., & Bharathiraja, N. (2021). Resourceful Routing Algorithm for Mobile Ad-Hoc Network to Enhance Energy Utilization. Wireless Personal Communications, 1-20.

M. Malik and M. Sharma, "Design and analysis of energy efficient MAC protocol for wireless sensor networks", Int J Eng Adv Technol (IJEAT), vol. 8, no. 3, pp. 690-696, 2019..

Xue, Q., Sun, Y., Wang, J., Feng, G., Yan, L., & Ma, S. (2021). User-centric association in ultra-dense mmWave networks via deep reinforcement learning. IEEE Communications Letters, 25(11), 3594-3598.

Su, C., Ye, F., Cong, S., & Tian, Y. (2020, July). Difference Based Matching Algorithm for User Association Problem in Ultra-Dense Heterogeneous Networks. In 2020 IEEE USNC-CNC-URSI North American Radio Science Meeting (Joint with AP-S Symposium) (pp. 81-82). IEEE.

Thiagarajah, S. P., Alias, M. Y., Tan, W. N., & Mahmud, A. (2020, November). Capacity optimised user association in planned small cell deployment for heterogeneous wireless networks. In 2020 IEEE 5th International Symposium on Telecommunication Technologies (ISTT) (pp. 123-128). IEEE.

Bouaziz, A., Saddoud, A., Fourati, L. C., & Chaouchi, H. (2021, June). Adaptive V2X user selection and resource allocation for ultra-dense 5G HetNet network. In 2021 International Wireless Communications and Mobile Computing (IWCMC) (pp. 1454-1459). IEEE.

Swami, P., Bhatia, V., Vuppala, S., & Ratnarajah, T. (2020). User fairness in NOMA-HetNet using optimized power allocation and time slotting. IEEE Systems Journal, 15(1), 1005-1014.

Fan, Q., & Ansari, N. (2016, April). Green energy aware user association in heterogeneous networks. In 2016 IEEE wireless communications and networking conference (pp. 1-6). IEEE.

Xu, C., Zheng, G., & Tang, L. (2020). Energy-aware user association for NOMA-based mobile edge computing using matching-coalition game. IEEE Access, 8, 61943-61955.

Downloads

Published

24.03.2024

How to Cite

Xavier, K. F. ., Vadnala, G. ., Kaur, G. ., Malik, M. ., Patil, S. ., & Lodhi, R. K. . (2024). An Optimal Time Constraint Algorithm for Energy Consumption in Hetrogeneous Mobile Networks. International Journal of Intelligent Systems and Applications in Engineering, 12(19s), 678–685. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/5112

Issue

Section

Research Article

Most read articles by the same author(s)